1 / 43

Humidity Estimates Using Simultaneous S- and K a -band Radar Measurements

Humidity Estimates Using Simultaneous S- and K a -band Radar Measurements. Scott Ellis National Center for Atmospheric Research. Motivation: Humidity. Water vapor is an important variable for weather at many scales Convection Severe weather Convective initiation

howe
Download Presentation

Humidity Estimates Using Simultaneous S- and K a -band Radar Measurements

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Humidity Estimates Using Simultaneous S- and Ka-band Radar Measurements Scott Ellis National Center for Atmospheric Research

  2. Motivation: Humidity • Water vapor is an important variable for weather at many scales • Convection • Severe weather • Convective initiation • PBL humidity difference of 1 g kg-1 can change CAPE from 0 to 600 J kg-1 – the difference between no storms and heavy rain (Crook 1996) • Numerical weather prediction and data assimilation • Quantitative precipitation estimation and forecasting • Hydrology in complex terrain • Tropical meteorology, e.g. the onset of the MJO

  3. Motivation: Humidity • Water vapor is highly variable in space and time (Crook 1996, Weckwerth et al. 1999) • Operational soundings occur every 12 hours separated by ~ 300 km • Additional high temporal water vapor measurements have numerous applications • Water vapor estimates from scanning radar could give high temporal resolution (typically 5 to 10 minute update times)

  4. Traditional radar cannot measure water vapor Microwaves are attenuated by water vapor Attenuation depends on watervaporquantity and radar wavelength Background Gaseous attenuation (dB km-1) Water vapor density (g m-3)

  5. Water vapor could be estimated from gaseous attenuation measurements How to measure gaseous attenuation? Background

  6. Background: S-PolKa • NCAR S-Pol radar upgraded with simultaneous S-band (10 cm) and Ka-band (0.8 cm) measurement capability (S-PolKa) • Matched 1 deg beam widths • Matched 150 m range gates S-band antenna Ka-band antenna • S-band is non-attenuating • Ka-band is heavily attenuating

  7. Background: S-PolKa • NCAR S-Pol radar upgraded with simultaneous S-band (10 cm) and Ka-band (0.8 cm) measurement capability (S-PolKa) • Matched 1 deg beam widths • Matched 150 m range gates • S-band is non-attenuating • Ka-band is heavily attenuating • For Rayleigh scatterers the S and Ka-band reflectivity differences are due to liquid and gas attenuation at Ka-band Gaseous attenuation (dB km-1) Water vapor density (g m-3)

  8. Objectives Path integrated water vapor profiles + Height + + + + Range Objectives • Estimate path-integrated humidity from dual-wavelength radar estimated gaseous attenuation • Combine several estimates to create a vertical profile

  9. Humidity Estimate: Method • Obtain Ray Segment • Compute Ka-band Gaseous Attenuation (dB km-1) • Compute Path-integrated Humidity • Compute Layer-based Vertical Profile

  10. Humidity Estimate: Obtain Ray Segment • Select small 2-D patches of cloud or precipitation echo (10 to 20 radar gates) • Each data patch results in one estimate of mean attenuation (dB km-1) and humidity (g m-3) S-band reflectivity (dBZ) Ka-band reflectivity (dBZ) Primary ray

  11. Humidity Estimate: Obtain Ray Segment • Select small 2-D patches of cloud or precipitation echo (10 to 20 radar gates) • Each data patch results in one estimate of mean attenuation (dB km-1) and humidity (g m-3) S-band reflectivity (dBZ) Ka-band reflectivity (dBZ) Primary ray

  12. Humidity Estimate: Obtain Ray Segment S-band reflectivity (dBZ) Ka-band reflectivity (dBZ)

  13. Humidity Estimate: Obtain Ray Segment S-band reflectivity (dBZ) Ka-band reflectivity (dBZ)

  14. Humidity Estimate: Obtain Ray Segment S-band reflectivity (dBZ) Ka-band reflectivity (dBZ) Secondary Ray

  15. Humidity Estimate: Compute Attenuation • Compute mean gaseous attenuation (dB km-1) of ray segments of length L • Ag = (dBZS – dBZKa)/L = DZ/L

  16. Humidity Method: Estimate Humidity • Microwave propagation model computes Ag for P, T and Humidity • Run Liebe (1987) model many times varying T, P and WV (g m-3) • Compute polynomial fit of WV to attenuation Results for RICO Water vapor density (g m-3) WV = 201.40A3 – 209.60A2 + 120.55A – 2.25 Where WV is water vapor density (g m-3) and A is gaseous attenuation (dB km-1)

  17. Humidity Method: Estimate Humidity • Microwave propagation model computes Ag for P, T and Humidity • Run Liebe (1987) model many times varying T, P and WV (g m-3) • Compute polynomial fit of WV to attenuation WV = 116.62A3 – 162.02A2 + 118.71A – 0.94 Results for REFRACTT Results for RICO Water vapor density (g m-3) WV = 201.40A3 – 209.60A2 + 120.55A – 2.25 Where WV is water vapor density (g m-3) and A is gaseous attenuation (dB km-1)

  18. Humidity Method: Creating Vertical Humidity Profile • Plot midpoint of ray segments • Layer-based Profile • Typical resolution 0.25 to 0.5 km + Height + + Range

  19. Humidity Method: Error Sources • Ag = (dBZS – dBZKa)/L = DZ/L • Error in gaseous attenuation, and thus humidity estimates are a function of ray segment length • 1 g m-3 is between 5 and 10 percent error • Requires dBZ difference errors less than 0.5 dB and range > 15 km Humidity errors resulting from DZ errors of 0.5 and 1.0 dB as a function of L Ray segment length (km)

  20. Humidity Method: Error Sources • Non Rayleigh scattering • Ground clutter • Point targets (birds aircraft) • Mie scattering at Ka-band (e.g. drops > 1 mm) • Bragg scattering at S-band • Ground clutter filter • Measurement noise • Attenuation by liquid • Calibration errors • Criteria designed to keep reflectivity difference errors < 0.5 dB

  21. Averaging 10 gates is sufficient Addressing Sources of Error • Measurement error • The reflectivity variance is mitigated by averaging numerous range gates • How many is enough? • Can estimate measurement variance of Z at both wavelengths and thus the variance of the difference (Keeler and Passarelli 1990; Keeler and Ellis 2000)

  22. Addressing Sources of Error • Inclusion of non-Rayleigh scatterers at S-band • Ground clutter • Point targets (aircraft, birds) • Bragg scatter • Reflections from fluctuations in humidity and temperature at a scale of 0.5l • Common near the turbulent edges of clouds • No Bragg echo detected at Ka-band • Require the S-band Z to be at least 5 dBZ. • Require the S-band Z to be at least 9 dB above the surrounding Bragg scatter

  23. Addressing Sources of Error • Inclusion of non-Rayleigh scatterers at Ka-band • Drops > 1 mm • Estimate Dmax using S-band dual-polarimetric data and reject gates with Dmax > 1 mm • Liquid water attenuation contamination • Limit comparison data to 0.5 km into cloud echo • Compute a spatial correlation, r, between S- and Ka-band Z: Reject data with r < 0.7 • Radar calibration errors • Errors in humidity- attenuation relationship

  24. + + + Humidity Results: REFRACTT S-band reflectivity (dBZ) Ka-band reflectivity (dBZ) o + . KDNR

  25. Humidity Results: REFRACTT + Over KDNR RMSD = 0.14 g m-3 Height (km) Layer-based estimate Sounding data Water vapor density (g m-3)

  26. Humidity Results: REFRACTT + Over KDNR o North of S-PolKa Height (km) Layer-based estimate Sounding data Water vapor density (g m-3)

  27. Humidity Results: REFRACTT Precipitable Water content from GPS S-Pol KDNR Courtesy of John Braun, NCAR

  28. Humidity Results: REFRACTT + Over KDNR o North of S-PolKa Height (km) Layer-based estimate Surface station in moist air Sounding data Water vapor density (g m-3)

  29. + radar retrieval – primary ray x Radar retrieval – secondary ray Humidity Results: RICO 10 January, 2005 RMSD = 0.85 g m-3 Height (km) Sounding data Water vapor density (g m-3)

  30. + radar retrieval – primary ray x Radar retrieval – secondary ray Humidity Results: RICO 10 January, 2005 Layer-based estimate Mean of sounding data using layer-based estimate resolution Height (km) Sounding data Water vapor density (g m-3)

  31. + radar retrieval – primary ray x Radar retrieval – secondary ray Humidity Results: RICO 12 January, 2005 RMSD = 0.75 g m-3 Layer-based estimate Mean of sounding data using layer-based estimate resolution Height (km) Sounding data Water vapor density (g m-3)

  32. Discussion: Humidity • The technique has recently been automated • Still testing algorithm thresholds • DYNAMO is first deployment • Layer based estimate not yet implemented – perhaps for DYNAMO

  33. Questions?

  34. 25 FRONT: Front Range Observing Network Testbed KCYS Pawnee CHILL S-PolKA Marshall site KFTG TDEN

  35. Humidity Results: REFRACTT Low level humidity from refractive index measurements S-Pol KDNR

  36. Various Radar Equations • g = antenna gain • = wavelength Pr = received power Pt = transmitted power q = vert beam width • = horiz beam width c = speed of light t = pulse width K = index of refraction L = attenuation losses z = reflectivity r = range D = diameter Ps = signal power Pn = noise power Mi = number independent pulses M = number of pulses sW = Spectrum width Td = dwell time Affective antenna area Radar equation for received power Reflectivity Variance of received power Number of independent samples

  37. Various Equations Relative Bragg scatter reflectivity • M = number of pulses • N = number of range gates • = attenuation coefficient (dB km-1 (g m-3)-1) • = range gate spacing sW = Spectrum width ts = time between pulses SNR = signal to noise ratio

  38. S-Pol Deployments Through Summer 2008 Boulder, CO 2006: REFRACTT 2006 Convective Initiation and water vapor Boulder, CO 2005: REFRACTT 2005 Convective Initiation and water vapor Denver, CO 1997: PROWS Convective rainfall estimation Boulder, CO 2004: WISP04 Winter Weather Idalia, CO: STEPS 2000 Severe convection and lightning Wichita, KS 1997: CASES 97 Watershed rainfall and land/surface West Port, WA 2001: IMPROVE Winter Storms Oklahoma Panhandle 2002: IHOP Water vapor and convective initiation Oregon 2001: IMPROVE II Orographic precipitation Milan Italy, 1999: MAP Orographic precipitation and flooding Melbourne, FL 1998: PRECIP98 Convective rainfall estimation S. Taiwan, 2008: TIMREX Monsoon and Mei-Yu Front flooding rain Mazatlan MX, 2004: NAME Orographic and Monsoon precipitation Barbuda W. Indies 2004: RICO Marine cumulus and warm rain Ji-Parana, Brazil 1999: TRMM-LBA Amazon wet season rainfall

  39. Time series of LWC at 4.5

  40. Averaging 10 gates is sufficient Addressing Sources of Error • Measurement error • The reflectivity variance is mitigated by averaging radar gates in range and azimuth • How many is enough? • Can estimate measurement variance of Z at both wavelengths and thus the variance of the difference (Keeler and Passarelli 1990; Keeler and Ellis 2000)

  41. Addressing Sources of Error • Inclusion of non-Rayleigh scatterers at S-band • Ground clutter • Point targets (aircraft, birds) • Bragg scatter • Reflections from fluctuations in humidity and temperature at a scale of 0.5l • Common near the turbulent edges of clouds • No Bragg echo detected at Ka-band • Require the S-band Z to be at least 9 dB above the surrounding Bragg scatter

  42. Addressing Sources of Error • Inclusion of non-Rayleigh scatterers at Ka-band • Drops > 1 mm • Estimate Dmax using S-band dual-polarimetric data and reject gates with Dmax > 1 mm • Liquid water attenuation contamination • Limit comparison data to 0.5 km into cloud echo • Compute a spatial correlation, r, between S- and Ka-band Z: Reject data with r < 0.7 • Radar calibration errors • Errors in humidity- attenuation relationship

  43. Ka-band extinction, scattering and absorption Example rain DSDs(Illingworth and Blackman 2002)

More Related